RCN2: Residual Capsule Network V2

Arjun Narukkanchira Anilkumar, M. El-Sharkawy
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Abstract

Unlike Convolutional Neural Network (CNN), which works on the shift-invariance in image processing, Capsule Networks can understand hierarchical model relations in depth[1]. This aspect of Capsule Networks let them stand out even when models are enormous in size and have accuracy comparable to the CNNs, which are one-tenth of its size. The capsules in various capsule-based networks were cumbersome due to their intricate algorithm. Recent developments in the field of Capsule Networks have contributed to mitigating this problem. This paper focuses on bringing one of the Capsule Network, Residual Capsule Network (RCN) to a comparable size to modern CNNs and thus restating the importance of Capsule Networks. In this paper, Residual Capsule Network V2 (RCN2) is proposed as an efficient and finer version of RCN with a size of 1.95 M parameters and an accuracy of 85.12% for the CIFAR-10 dataset.
RCN2:残余胶囊网络V2
与卷积神经网络(CNN)在图像处理中的移位不变性不同,胶囊网络可以深度理解层次模型关系[1]。Capsule Networks的这一特点让它们在模型规模巨大、精度与cnn相当的情况下也能脱颖而出,而cnn的规模只有它的十分之一。各种基于胶囊的网络中的胶囊由于其复杂的算法而显得十分繁琐。胶囊网络领域的最新发展有助于缓解这一问题。本文的重点是将胶囊网络之一,残余胶囊网络(RCN)扩展到与现代cnn相当的规模,从而重申胶囊网络的重要性。本文提出了残差胶囊网络V2 (Residual Capsule Network V2, RCN2)作为RCN的高效精细版本,其参数大小为1.95 M,在CIFAR-10数据集上的准确率为85.12%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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